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Analysis of Pattern Learning and Extraction (MAPLE) PI: Dr. Bruno Loureiro We invite applications from highly motivated, independent, and creative postdoctoral researchers to work on the theory of feature
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Inria, the French national research institute for the digital sciences | Paris 15, le de France | France | 7 days ago
, located at Inria Paris and École Normale Supérieure (ENS). The team conducts research in various aspects of quantum information theory, including quantum error correction, quantum algorithms, and the
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level micro-economics or game theory; familiarity with empirical research using surveys and interviews. Specific Requirements Familiarity with the desperation threshold model of decision making
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patent filings. The work will be centred around topics such as machine learning for communications, communication theory, signal processing for communications, coding theory, and information theory. Your
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. Specific Requirements Knowledge or prior experience in climate modelling, dynamical systems theory, and palaeoclimate dynamics will be considered an advantage. Demonstrated interest in interdisciplinary
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and men. Project overview The project concerns applying supervisory control theory to security in a broad sense, both as off-line and on-line approaches. The work is collaborative in nature, bridging
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good knowledge of sociological theories in the fields of music and arts and of empirical research methods Ongoing publication activity and attendance of conference Specific Requirements Knowledge
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. Anharmonic spectra for PAHs can be calculated using 2nd order Vibrational Perturbation Theory on Density Functional Theory derived Quartic Force Fields but are computationally very expensive when considering
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on "Canalization and Other Design Principles of Gene Regulatory Network Models" (https://www.nsf.gov/awardsearch/showAward?AWD_ID=2451973 ) and "A mathematical theory for the biological concept of modularity” (https
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that can directly take raw, high-dimensional data from experiments or observatories and rapidly infer theory parameters, such as Higgs boson properties at the Large Hadron Collider or neutron star properties